# Fill matrix with loop

I am trying to create a matrix `n` by `k` with `k` mvn covariates using a loop. Quite simple but not working so far... Here is my code:

``````n=1000
k=5
p=100
mu=0
sigma=1
x=matrix(data=NA, nrow=n, ncol=k)

for (i in 1:k){
x [[i]]= mvrnorm(n,mu,sigma)
}
``````

What's missing?

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## migrated from stats.stackexchange.comFeb 4 '13 at 11:33

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Matrices don't work like that. Try using `x[,i]` not `x[[i]]`. An easier way to do it with no loop is `x<-matrix(data=rnorm(n*k,mu,sigma), nrow=n, ncol=k)` – Glen_b Feb 4 '13 at 0:51

I see several things here. First, you may want to set the random seed for replicability (`set.seed(20430)`). This means that every time you run the code, you will get exactly the same set of pseudorandom variates. Next, your data will just be independent variates; they won't actually have any multivariate structure (although that may be what you want). In general, if you want to generate multivariate data, you should use ?mvrnorm, from the MASS package. (For more info, see here.) Third, you don't need a loop to fill a matrix in R, just generate as many values as you like and add them directly using the `data=` argument in the `matrix()` function. If you really were committed to using a loop, you should probably use a double loop, so that you are looping over the columns, and within each loop, looping over the rows. (Note that this is a very inefficient way to code in R--although I do things like that all the time ;-). Lastly, I can't tell what `p` is supposed to be doing in your code.

Here is a basic way to do what you seem to be going for:

``````set.seed(20430)
n     = 1000
k     = 5
p     = 100
mu    = 0
sigma = 1
dat   = rnorm(n*k)
x     = matrix(data=dat, nrow=n, ncol=k)
``````

If you really wanted to use loops you could do it like this:

``````x=matrix(data=NA, nrow=n, ncol=k)

for(j in 1:k){
for(i in 1:n){
x[i,j] = rnorm(1, mu, sigma)
}
}
``````
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``````A=c(2,3,4,5);# In your case row terms
B=c(3,4,5,6);# In your case column terms
x=matrix(,nrow = length(A), ncol = length(B));
for (i in 1:length(A)){
for (j in 1:length(B)){
x[i,j]<-(A[i]*B[j])# do the similarity function, simi(A[i],B[j])
}
}
x # matrix is filled
``````

I was thinking in my problem perspective.

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